Browse By Person: Zhou, Yifan
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Number of items: 7.
Journal Article
Zhou, Yifan, Sun, Yong, Mathew, Joseph, Wolff, Rodney C., & Ma, Lin (2011) Latent degradation indicators estimation and prediction : a Monte Carlo approach. Mechanical Systems and Signal Processing, 25(1), pp. 222-236.
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2Zhou, Yifan, Ma, Lin, Mathew, Joseph, Sun, Yong, & Wolff, Rodney C. (2011) Maintenance strategy optimization using a continuous-state partially observable semi-Markov decision process. Microelectronics Reliability, 51(2), pp. 300-309.
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2Conference Paper
Zhou, Yifan, Ma, Lin, Wolff, Rodney C., & Kim, Hack-Eun (2009) Asset life prediction using multiple degradation indicators and lifetime data : a Gamma-based state space model approach. In The 8th International Conference on Reliability, Maintainability and Safety, 20-24 July 2009, Chengdu, China. (In Press)
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1Yu, Yi, Ma, Lin, Gu, YuanTong, & Zhou, Yifan (2008) Confidence interval of lifetime distribution using bootstrap method. In The Third World Congress on Engineering Asset Management and Intelligent Maintenance Systems Conference, 27-30 October 2008, Beijing, China.
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517Zhou, Yifan, Ma, Lin, Sun, Yong, & Mathew, Joseph (2008) Latent degradation indicator estimation using condition monitoring information. In Gao, Jinji, Lee, Jay, Ni, Jun, Ma, Lin, & Mathew, Joseph (Eds.) 3rd World Congress on Engineering Asset Management and Intelligent Maintenance Systems Conference, 27-30 October 2008, Beijing, China.
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174Zhou, Yifan, Ma, Lin, & Mathew, Joseph (2008) A non-gaussian continuous state space model for asset degradation. In Gao, Jinji, Lee, Jay, Ni, Jun, Ma, Lin, & Mathew, Joseph (Eds.) 3rd World Congress on Engineering Asset Management and Intelligent Maintenance Systems Conference, 27th-30th October 2008, Beijing, China.
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213QUT Thesis
Zhou, Yifan (2010) Asset life prediction and maintenance decision-making using a non-linear non-Gaussian state space model. PhD thesis, Queensland University of Technology.
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